Partial Sum Minimization of Singular Values in RPCA for Low-Level Vision

Tae-Hyun Oh, Hyeongwoo Kim, Yu-Wing Tai, J. Bazin, In-So Kweon
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引用次数: 69

Abstract

Robust Principal Component Analysis (RPCA) via rank minimization is a powerful tool for recovering underlying low-rank structure of clean data corrupted with sparse noise/outliers. In many low-level vision problems, not only it is known that the underlying structure of clean data is low-rank, but the exact rank of clean data is also known. Yet, when applying conventional rank minimization for those problems, the objective function is formulated in a way that does not fully utilize a priori target rank information about the problems. This observation motivates us to investigate whether there is a better alternative solution when using rank minimization. In this paper, instead of minimizing the nuclear norm, we propose to minimize the partial sum of singular values. The proposed objective function implicitly encourages the target rank constraint in rank minimization. Our experimental analyses show that our approach performs better than conventional rank minimization when the number of samples is deficient, while the solutions obtained by the two approaches are almost identical when the number of samples is more than sufficient. We apply our approach to various low-level vision problems, e.g. high dynamic range imaging, photometric stereo and image alignment, and show that our results outperform those obtained by the conventional nuclear norm rank minimization method.
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基于低层次视觉的RPCA奇异值部分和最小化算法
通过秩最小化的鲁棒主成分分析(RPCA)是恢复被稀疏噪声/异常值损坏的干净数据的潜在低秩结构的强大工具。在许多低级视觉问题中,不仅知道干净数据的底层结构是低秩的,而且还知道干净数据的确切秩。然而,当对这些问题应用传统的秩最小化时,目标函数的制定方式并没有充分利用有关问题的先验目标秩信息。这一观察结果促使我们去研究在使用秩最小化时是否有更好的替代解决方案。在本文中,我们提出了奇异值的部分和的最小化,而不是最小化核范数。所提出的目标函数隐含地鼓励了秩最小化中的目标秩约束。我们的实验分析表明,当样本数量不足时,我们的方法比传统的秩最小化方法性能更好,而当样本数量大于足够时,两种方法得到的解几乎相同。我们将该方法应用于各种低级视觉问题,如高动态范围成像,光度立体和图像对齐,并表明我们的结果优于传统的核范数秩最小化方法。
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